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A Bi-directional Stereo Matching Algorithm based-on Adaptive Matching Window

机译:基于自适应匹配窗口的双向立体匹配算法

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In this paper, a bi-directional stereo matching algorithm based-on adaptive matching window is proposed. That is, by adaptively predicting the mutual correlation between stereo images pair using the proposed algorithm, the bandwidth of stereo input images pair can be compressed to the level of a conventional 2D image and a predicted image also can be effectively reconstructed using a reference image and disparity vectors. Especially, in the proposed algorithm, first feature values are extracted from input stereo images pair. Then, a matching window for stereo matching is adaptively selected depending on the magnitude of these feature values. That is, for the region having larger feature values, a smaller matching window is selected while, for the opposite case, a larger matching window is selected by comparing predetermined threshold values. This approach is not only able to reduce a mismatching of disparity vectors which occurs in the conventional dense disparity estimation with a small matching window, but is also able to reduce blocking effects which occur in the coarse disparity estimation with a large matching window. In addition, from some experiments using stereo sequences of 'Man' and 'Fichier', it is shown that the proposed algorithm improves the PSNRs of a reconstructed image to about 6.78 dB on average at ± 30 search ranges by comparing with that of conventional algorithms. And also, it is found that there is almost no difference between an original image and a reconstructed image through the proposed algorithm by comparison to that of conventional algorithms.
机译:提出了一种基于自适应匹配窗口的双向立体声匹配算法。也就是说,通过使用所提出的算法自适应地预测立体图像对之间的相互相关性,可以将立体输入图像对的带宽压缩到常规2D图像的水平,并且还可以使用参考图像有效地重建预测图像,并且视差向量。特别地,在所提出的算法中,从输入立体图像对中提取第一特征值。然后,根据这些特征值的大小来自适应地选择用于立体匹配的匹配窗口。即,对于具有较大特征值的区域,选择较小的匹配窗口,而对于相反情况,通过比较预定阈值来选择较大的匹配窗口。该方法不仅能够以较小的匹配窗口减少在传统的密集视差估计中出现的视差矢量的失配,而且还能够以较大的匹配窗口减小在粗视差估计中出现的阻塞效应。此外,从一些使用“ Man”和“ Fichier”立体声序列的实验中可以看出,与传统算法相比,该算法在±30搜索范围内将重构图像的PSNR平均提高到了约6.78 dB。 。并且还发现,与传统算法相比,通过所提出的算法,原始图像和重建图像之间几乎没有差异。

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